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Aggregating Distribution Forecasts from Deep Ensembles

Schulz, Benedikt ORCID iD icon 1; Köhler, Lutz 2; Lerch, Sebastian ORCID iD icon 3
1 Institut für Stochastik (STOCH), Karlsruher Institut für Technologie (KIT)
2 Institut für Statistik (STAT), Karlsruher Institut für Technologie (KIT)
3 Institut für Volkswirtschaftslehre (ECON), Karlsruher Institut für Technologie (KIT)

Abstract:

The importance of accurately quantifying forecast uncertainty has motivated much recent research on probabilistic forecasting. In particular, a variety of deep learning approaches has been proposed, with forecast distributions obtained as output of neural networks. These neural network-based methods are often used in the form of an ensemble, e.g., based on multiple model runs from different random initializations or more sophisticated ensembling strategies such as dropout, resulting in a collection of forecast distributions that need to be aggregated into a final probabilistic prediction. With the aim of consolidating findings from the machine learning literature on ensemble methods and the statistical literature on forecast combination, we address the question of how to aggregate distribution forecasts based on such ‘deep ensembles’. We analyze the effect on the aggregated forecast distribution for the standard practice of averaging model output, and whether more suitable approaches are readily available. Using theoretical arguments and a comprehensive analysis on twelve benchmark data sets, we systematically compare probability- and quantile-based aggregation methods for three neural network-based approaches with different forecast distribution types as output. ... mehr


Verlagsausgabe §
DOI: 10.5445/IR/1000193481
Veröffentlicht am 21.05.2026
Originalveröffentlichung
DOI: 10.1007/s10994-025-06946-3
Cover der Publikation
Zugehörige Institution(en) am KIT Institut für Statistik (STAT)
Institut für Stochastik (STOCH)
Institut für Volkswirtschaftslehre (ECON)
Publikationstyp Zeitschriftenaufsatz
Publikationsmonat/-jahr 05.2026
Sprache Englisch
Identifikator ISSN: 0885-6125, 1573-0565
KITopen-ID: 1000193481
Erschienen in Machine Learning
Verlag Springer-Verlag
Band 115
Heft 5
Seiten Art.Nr: 120
Vorab online veröffentlicht am 09.05.2026
Schlagwörter Deep ensembles, Model combination, Neural networks, Probabilistic forecasting, Distribution forecasts
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